Throughput-Optimal Scheduling via Rate Learning

Panagiotis Promponas, Víctor Valls, Konstantinos Nikolakakis, Dionysis Kalogerias, Leandros Tassiulas
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Abstract

We study the problem of designing scheduling policies for communication networks. This problem is often addressed with max-weight-type approaches since they are throughput-optimal. However, max-weight policies make scheduling decisions based on the network congestion, which can be sometimes unnecessarily restrictive. In this paper, we present a ``schedule as you learn'' (SYL) approach, where we learn an average rate, and then select schedules that generate such a rate in expectation. This approach is interesting because scheduling decisions do not depend on the size of the queue backlogs, and so it provides increased flexibility to select schedules based on other criteria or rules, such as serving high-priority queues. We illustrate the results with numerical experiments for a cross-bar switch and show that, compared to max-weight, SYL can achieve lower latency to certain flows without compromising throughput optimality.
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通过速率学习优化吞吐量调度
我们研究的是为通信网络设计调度策略的问题。这个问题通常采用最大权重型方法来解决,因为它们是吞吐量最优的。然而,最大权重策略根据网络拥塞情况做出调度决策,有时会造成不必要的限制。在本文中,我们提出了一种 "边学习边调度"(SYL)方法,即学习平均速率,然后选择能产生这种期望速率的调度。这种方法非常有趣,因为调度决策并不取决于队列积压的大小,因此它提供了更大的灵活性,可以根据其他标准或规则选择调度,例如为高优先级队列提供服务。我们通过对跨条交换机的数值实验对结果进行了说明,结果表明,与ax-weight 相比,SYL 可以在不影响吞吐量优化的情况下降低某些流量的延迟。
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